INVESTIGADORES
MONGE Maria Eugenia
congresos y reuniones científicas
Título:
A mass spectrometry-based lipidomics study for early diagnosis of clear cell renal cell carcinoma
Autor/es:
MALENA MANZI; MARTÍN PALAZZO; NICOLÁS ZABALEGUI; MARÍA ELENA KNOTT; PATRICIO YANKILEVICH; MARÍA ISABEL GIMÉNEZ; LYDIA I. PURICELLI; MARÍA EUGENIA MONGE
Reunión:
Conferencia; 3rd International Electronic Conference on Metabolomics; 2018
Resumen:
Kidney cancer is fundamentally a metabolic disease. Renal cell carcinoma (RCC) is among the 10 most common cancers worldwide. More than 30% of patients, often incidentally diagnosed by imaging procedures, exhibit locally advanced or metastatic RCC at the time of diagnosis. The disease is inherently resistant to chemotherapy and radiotherapy. Clear cell RCC (ccRCC) is the most common (75%) lethal subtype, and is considered a glycolytic and lipogenic tumor. The present work consists on a lipid profiling study of serum samples from a cohort that included patients with different ccRCC stages (stage I, II, III and, IV; n=112) and healthy individuals (n=52). A discovery-based lipidomics approach using reverse phase ultraperformance liquid chromatography coupled to quadrupole-time-of-flight mass spectrometry was implemented to investigate the potential role of lipids in sample classification. Multivariate statistical analysis was conducted on a 386-feature matrix by means of machine learning algorithms using support vector machines (SVM) coupled with the least absolute shrinkage and selection operator (Lasso) variable selection method. This analysis provided a panel of 18 features that allowed discriminating healthy individuals from ccRCC patients with 96% accuracy, 93% specificity, and 100% sensitivity in a training set under cross-validation, and 79% accuracy, 100% specificity, and 79% sensitivity in an independent test set with an AUC of 0.89. A second multivariate model trained to discriminate early stages (I and II) from late stages (III and IV) ccRCC, yielded a panel of 26 features that allowed sample classification with 84% accuracy in the training set under cross-validation, and 82% accuracy in the classification of stage I ccRCC patients from an independent test set. Preliminary putative identification of discriminant lipids was based on exact mass, isotopic pattern and database search. Significant changes in lipid levels were evaluated after correcting for multiple testing between sample classes. Phosphatidylethanolamine levels were significantly decreased (p